543
Views
5
CrossRef citations to date
0
Altmetric
Review Articles

Office light control moving toward automation and humanization: a literature review

, &
Pages 225-256 | Received 08 Jul 2018, Accepted 29 Nov 2018, Published online: 15 Dec 2018

References

  • Afshari, S., S. Mishra, A. Julius, F. Lizarralde, J. D. Wason, and J. T. Wen. 2014. “Modeling and Control of Color Tunable Lighting Systems.” Energy and Buildings 68: 242–253.
  • Aghemo, C., L. Blaso, and A. Pellegrino. 2014. “Building Automation and Control Systems: A Case Study to Evaluate the Energy and Environmental Performances of a Lighting Control System in Offices.” Automation in Construction 43: 10–22.
  • Akyildiz, I. F., and I. H. Kasimoglu. 2004. “Wireless Sensor and Actor Networks: Research Challenges.” Ad Hoc Networks 2: 351–367.
  • Aldrich, M., A. Badshah, B. Mayton, N. Zhao, and J. A. Paradiso. 2013. Random Walk and Lighting Control.” IEEE Sensors, 1–4
  • Athienitis, A. K., and A. Tzempelikos. 2002. “A Methodology for Simulation of Daylight Room Illuminance Distribution and Light Dimming for a Room with a Controlled Shading Device.” Solar Energy 72: 271–281.
  • Baloch, A. A., P. H. Shaikh, F. Shaikh, et al. 2018. “Simulation Tools Application for Artificial Lighting in Buildings.” Renewable and Sustainable Energy Reviews 82: 3007–3026.
  • Bonomolo, M., M. Beccali, V. Lo Brano, and G. Zizzo. 2017. “A set of Indices to Assess the Real Performance of Daylight-Linked Control Systems.” Energy and Buildings 149: 235–245.
  • Borile, S., A. Pandharipande, D. Caicedo, A. Cenedese, and L. Schenato. 2017. “ An Identification Approach to Lighting Control.” 2016 Eur Control Conf ECC 2016.
  • Bourgeois, D., C. Reinhart, and I. Macdonald. 2006. “Adding Advanced Behavioural Models in Whole Building Energy Simulation: A Study on the Total Energy Impact of Manual and Automated Lighting Control.” Energy and Buildings 38: 814–823.
  • Bustamante, W., D. Uribe, S. Vera, and G. Molina. 2017. “An Integrated Thermal and Lighting Simulation Tool to Support the Design Process of Complex Fenestration Systems for Office Buildings.” Applied Energy 198: 36–48.
  • Caicedo, D., and A. Pandharipande. 2013. “Daylight Estimation in a Faulty Light Sensor System for Lighting Control.” Information Fusion (FUSION, 617–622.
  • Caicedo, D., and A. Pandharipande. 2013. “Distributed Illumination Control with Local Sensing and Actuation in Networked Lighting Systems.” IEEE Sensors Journal 13: 1092–1104.
  • Caicedo, D., and A. Pandharipande. 2015. “Sensor-Driven Lighting Control With Illumination and Dimming Constraints.” IEEE Sensors Journal 15 (9): 5169–5176.
  • Caicedo, D., A. Pandharipande, and G. Leus. 2011. “Occupancy-based Illumination Control of LED Lighting Systems.” Lighting Research & Technology 43: 217–234.
  • Caicedo, D., A. Pandharipande, and F. M. J. Willems. 2014. “Daylight-adaptive Lighting Control Using Light Sensor Calibration Prior-Information.” Energy and Buildings 73: 105–114.
  • Carletti, C., F. Sciurpi, L. Pierangioli, F. Asdrubali, A. L. Pisello, F. Bianchi, et al. 2016. “Thermal and Lighting Effects of an External Venetian Blind: Experimental Analysis in a Full Scale Test Room.” Building and Environment 106: 45–56.
  • Chaiwiwatworakul, P., S. Chirarattananon, and P. Rakkwamsuk. 2009. “Application of Automated Blind for Daylighting in Tropical Region.” Energy Conversion and Management 50: 2927–2943.
  • Chan, Y. C., and A. Tzempelikos. 2013. “Efficient Venetian Blind Control Strategies Considering Daylight Utilization and Glare Protection.” Solar Energy 98: 241–254.
  • Cheng, Z., Q. Zhao, F. Wang, Y. Jiang, L. Xia, and J. Ding. 2016. “Satisfaction Based Q-Learning for Integrated Lighting and Blind Control.” Energy and Buildings 127: 43–55.
  • Chew, I., V. Kalavally, N. W. Oo, and J. Parkkinen. 2016. “Design of an Energy-Saving Controller for an Intelligent LED Lighting System.” Energy and Buildings 120: 1–9.
  • Chew, I., D. Karunatilaka, C. P. Tan, and V. Kalavally. 2017. “Smart Lighting: The way Forward? Reviewing the Past to Shape the Future.” Energy and Buildings 149: 180–191.
  • Choi, H., S. Hong, A. Choi, and M. Sung. 2016. “Toward the Accuracy of Prediction for Energy Savings Potential and System Performance Using the Daylight Responsive Dimming System.” Energy and Buildings 133: 271–280.
  • Chung, T. M., and J. Burnett. 2001. “On the Prediction of Lighting Energy Savings Achieved by Occupancy Sensors.” Energy Eng J Assoc Energy Eng 98: 6–23.
  • Congradac, V. D., B. B. Milosavljević, J. M. Veličković, and V. Prebiračević B. 2012. “Control of the Lighting System Using a Genetic Algorithm.” Thermal Science 16: 237–250.
  • Copot, C., M. Thi T, and C. Ionescu. 2018. “PID Based Particle Swarm Optimization in Offices Light Control.” IFAC-PapersOnLine 51 (4): 382–387.
  • da Silva, P. C., V. Leal, and M. Andersen. 2013. “Occupants Interaction with Electric Lighting and Shading Systems in Real Single-Occupied Offices: Results From a Monitoring Campaign.” Building and Environment 64: 152–168.
  • Daysim. n.d. Accessed January 5, 2018. http://daysim.ning.com/.
  • de Bakker, Christel, Mariëlle Aarts, Helianthe Kort, and Alexander Rosemann. 2018. “The Feasibility of Highly Granular Lighting Control in Open-Plan Offices: Exploring the Comfort and Energy Saving Potential.” Building and Environment 142: 427–438.
  • de Bakker, C., M. Aries, H. Kort, and A. Rosemann. 2017. “Occupancy-based Lighting Control in Open-Plan Office Spaces: A State-of-the-art Review.” Building and Environment 112: 308–321.
  • Delvaeye, R., W. Ryckaert, L. Stroobant, P. Hanselaer, R. Klein, and H. Breesch. 2016. “Analysis of Energy Savings of Three Daylight Control Systems in a School Building by Means of Monitoring.” Energy and Buildings 127: 969–979.
  • DIALux. n.d. Accessed January 5, 2018. https://www.dial.de/en/dialux/.
  • Dikel, E. E., and G. R. Newsham. 2014. “ Unlocking the Potential Energy Savings from Shorter Time Delay Occupancy Sensors.” Ld+A Magazine.
  • DOE-2. n.d. Accessed January 5, 2018. http://doe2.com/DOE2/index.html.
  • Dounis, A. I., M. J. Santamouris, and C. C. Lefas. 1993. “Building Visual Comfort Control with Fuzzy Reasoning.” Energy Conversion and Management 34: 17–28.
  • Dubois, M. C., and Å Blomsterberg. 2011. “Energy Saving Potential and Strategies for Electric Lighting in Future North European, low Energy Office Buildings: A Literature Review.” Energy and Buildings 43: 2572–2582.
  • EnergyPlus. n.d. Accessed January 5, 2018. https://energyplus.net/.
  • Engineering Village. n.d. https://www.engineeringvillage.com/search/quick.url.
  • ESP-r. n.d. Accessed January 5, 2018. http://www.esru.strath.ac.uk/Programs/ESP-r.htm.
  • Fernandes, L. L., E. S. Lee, D. L. Dibartolomeo, and A. McNeil. 2014. “Monitored Lighting Energy Savings From Dimmable Lighting Controls in the New York Times Headquarters Building.” Energy and Buildings 68: 498–514.
  • Foster, M., and T. Oreszczyn. 2001. “Occupant Control of Passive Systems: The use of Venetian Blinds.” Building and Environment 36: 149–155.
  • Galasiu, A. D., M. R. Atif, and R. A. MacDonald. 2004. “Impact of Window Blinds on Daylight-Linked Dimming and Automatic on/off Lighting Controls.” Solar Energy 76: 523–544.
  • Galasiu, A. D., G. R. Newsham, C. Suvagau, et al. 2007. “Energy Saving Lighting Control Systems for Open-Plan Offices: A Field Study.” LEUKOS 4 (1): 7–29.
  • Galasiu, A. D., and J. A. Veitch. 2006. “Occupant Preferences and Satisfaction with the Luminous Environment and Control Systems in Daylit Offices: a Literature Review.” Energy and Buildings 38: 728–742.
  • Gao, Y., Y. Lin, and Y. Sun. 2013. “A Wireless Sensor Network Based on the Novel Concept of an I-Matrix to Achieve High-Precision Lighting Control.” Building and Environment 70: 223–231.
  • Gentile, N., and M. C. Dubois. 2017. “Field Data and Simulations to Estimate the Role of Standby Energy use of Lighting Control Systems in Individual Offices.” Energy and Buildings 155: 390–403.
  • Gilani, S., and W. O’Brien. 2018. “A Preliminary Study of Occupants’ use of Manual Lighting Controls in Private Offices: A Case Study.” Energy and Buildings 159, 572–586.
  • Google Scholar. n.d. https://scholar.google.com/.
  • Görgülü, S., and N. Ekren. 2013. “Energy Saving in Lighting System with Fuzzy Logic Controller Which Uses Light-Pipe and Dimmable Ballast.” Energy and Buildings 61: 172–176.
  • Granderson, J. A. 2008. Human-centered sensor-based Bayesian control: Increased energy efficiency and user satisfaction in commercial lighting. Diss Theses - Gradworks.
  • Granderson, J., and A. Agogino. 2006. “Intelligent Office Lighting: Demand-Responsive Conditioning and Increased User Satisfaction.” LEUKOS 2 (3): 185–198.
  • Guillemin, A., and N. Morel. 2001. “An Innovative Lighting Controller Integrated in a Self-Adaptive Building Control System.” Energy and Buildings 33: 477–487.
  • Gunay, H. B., W. O’Brien, I. Beausoleil-Morrison, and S. Gilani. 2017. “Development and Implementation of an Adaptive Lighting and Blinds Control Algorithm.” Building and Environment 113: 185–199.
  • Gunay, H. B., W. O’Brien, I. Beausoleil-Morrison, and B. Huchuk. 2014. “On Adaptive Occupant-Learning Window Blind and Lighting Controls.” Building Research & Information 42: 739–756.
  • Guo, X., K. Tiller D, P. Henze G, et al. 2009. “Analytical Methods for Application to Sensor Networks for Lighting Control.” LEUKOS 5 (4): 297–311.
  • Guo, X., K. Tiller D, P. Henze G, et al. 2010. “The Performance of Occupancy-Based Lighting Control Systems: A Review.” Lighting Research & Technology 42 (1): 415–431.
  • Hammad, F., and B. Abu-Hijleh. 2010. “The Energy Savings Potential of Using Dynamic External Louvers in an Office Building.” Energy and Buildings 42: 1888–1895.
  • Ihm, P., A. Nemri, and M. Krarti. 2009. “Estimation of Lighting Energy Savings From Daylighting.” Building and Environment 44: 509–514.
  • Jennings, J. D., F. M. Rubinstein, D. DiBartolomeo, and S. L. Blanc. 2000. “Comparison of Control Options in Private Offices in an Advanced Lighting Controls Testbed.” Journal of the Illuminating Engineering Society 29: 39–60.
  • Jia, L., S. Afshari, S. Mishra, and R. J. Radke. 2014. “Simulation for pre-Visualizing and Tuning Lighting Controller Behavior.” Energy and Buildings 70: 287–302.
  • Kandasamy, Nandha Kumar, Giridharan Karunagaran, Costas Spanos, King Jet Tseng, and Boon-Hee Soong. 2018. “Smart Lighting System Using ANN-IMC for Personalized Lighting Control and Daylight Harvesting.” Building and Environment 139: 170–180.
  • Kazanasmaz, T., M. Günaydin, and S. Binol. 2009. “Artificial Neural Networks to Predict Daylight Illuminance in Office Buildings.” Building and Environment 44: 1751–1757.
  • Kim, W., Y. Jeon, and Y. Kim. 2016. “Simulation-based Optimization of an Integrated Daylighting and HVAC System Using the Design of Experiments Method.” Applied Energy 162: 666–674.
  • Kim, J. H., Y. J. Park, M. S. Yeo, and K. W. Kim. 2009. “An Experimental Study on the Environmental Performance of the Automated Blind in Summer.” Building and Environment 44: 1517–1527.
  • Kirimtat, A., B. K. Koyunbaba, I. Chatzikonstantinou, and S. Sariyildiz. 2016. “Review of Simulation Modeling for Shading Devices in Buildings.” Renewable and Sustainable Energy Reviews 53: 23–49.
  • Konstantoglou, M., and A. Tsangrassoulis. 2016. “Dynamic Operation of Daylighting and Shading Systems: A Literature Review.” Renewable and Sustainable Energy Reviews 60: 268–283.
  • Konstantzos, I., A. Tzempelikos, and C. Chan Y. 2015. “Experimental and Simulation Analysis of Daylight Glare Probability in Offices with Dynamic Window Shades.” Building and Environment 87: 244–254.
  • Kontadakis, A., A. Tsangrassoulis, L. Doulos, and F. Topalis. 2017. “An Active Sunlight Redirection System for Daylight Enhancement Beyond the Perimeter Zone.” Building and Environment 113: 267–279.
  • Koo, S. Y., M. S. Yeo, and K. W. Kim. 2010. “Automated Blind Control to Maximize the Benefits of Daylight in Buildings.” Building and Environment 45: 1508–1520.
  • Kristl, Ž, M. Košir, M. Trobec Lah, and A. Krainer. 2008. “Fuzzy Control System for Thermal and Visual Comfort in Building.” Renewable Energy 33: 694–702.
  • Kwon, S. Y., and J. H. Lim. 2017. “Multi-objective Context-Adaptive Natural Lighting System.” Energy and Buildings 144: 61–73.
  • LabVIEW. n.d. Accessed January 5, 2018. http://www.ni.com/en-us/shop/LabVIEW.html.
  • Lah, M. T., B. Zupančič, and A. Krainer. 2005. “Fuzzy Control for the Illumination and Temperature Comfort in a Test Chamber.” Building and Environment 40: 1626–1637.
  • Lah, M. T., B. Zupančič, J. Peternelj, and A. Krainer. 2006. “Daylight Illuminance Control with Fuzzy Logic.” Solar Energy 80: 307–321.
  • Leclercq, M., E. Arnal, C. Anthierens, and E. Bideaux. 2011. “Control of Visual Conditions for Open-Plan Offices.” Mechatronics 21: 581–593.
  • Lee, E. S., D. L. DiBartolomeo, and S. E. Selkowitz. 1998. “Thermal and Daylighting Performance of an Automated Venetian Blind and Lighting System in a Full-Scale Private Office.” Energy and Buildings 29: 47–63.
  • Li, D. H. W., and J. C. Lam. 2001. “Evaluation of Lighting Performance in Office Buildings with Daylighting Controls.” Energy and Buildings 33: 793–803.
  • Li, D. H. W., T. N. T. Lam, and S. L. Wong. 2006. “Lighting and Energy Performance for an Office Using High Frequency Dimming Controls.” Energy Conversion and Management 47: 1133–1145.
  • Li, S., and A. Pandharipande. 2015. “Networked Illumination Control with Distributed Light-Harvesting Wireless Sensors.” IEEE Sensors Journal 15: 1662–1669.
  • Liu, J., W. Zhang, X. Chu, and Y. Liu. 2016. “Fuzzy Logic Controller for Energy Savings in a Smart LED Lighting System Considering Lighting Comfort and Daylight.” Energy and Buildings 127: 95–104.
  • Logar, V., Ž Kristl, and I. Škrjanc. 2014. “Using a Fuzzy Black-box Model to Estimate the Indoor Illuminance in Buildings.” Energy and Buildings 70: 343–351.
  • Madias, E. N. D., P. A. Kontaxis, and V. Topalis F. 2016. “Application of Multi-Objective Genetic Algorithms to Interior Lighting Optimization.” Energy and Buildings 125: 66–74.
  • Magno, M., T. Polonelli, L. Benini, and E. Popovici. 2015. “A low Cost, Highly Scalable Wireless Sensor Network Solution to Achieve Smart LED Light Control for Green Buildings.” IEEE Sensors Journal 15: 2963–2973.
  • Mahdavi, A., A. Mohammadi, E. Kabir, and L. Lambeva. 2008. “Occupants’ Operation of Lighting and Shading Systems in Office Buildings.” Journal of Building Performance Simulation 1: 57–65.
  • MATLAB. n.d. Accessed January 5, 2018. https://www.mathworks.com/products/matlab.html.
  • Mendell, M., and G. Heath. 2005. “Do Indoor Pollutants and Thermal Conditions in Schools Influence Student Performance? A Critical Review of the Literature.” Indoor Air 15: 27–52.
  • Mendes, L. A., R. Z. Freire, L. Coelho, S. dos, and A. S. Moraes. 2017. “Minimizing Computational Cost and Energy Demand of Building Lighting Systems: A Real Time Experiment Using a Modified Competition Over Resources Algorithm.” Energy and Buildings 139: 108–123.
  • Motamed, A., L. Deschamps, and J. L. Scartezzini. 2017. “On-site Monitoring and Subjective Comfort Assessment of a sun Shadings and Electric Lighting Controller Based on Novel High Dynamic Range Vision Sensors.” Energy and Buildings 149: 58–72.
  • Naghibzadeh, S., A. Pandharipande, D. Caicedo, and G. Leus. 2015. “Indoor Granular Presence Sensing and Control Messaging with an Ultrasonic Circular Array Sensor.” IEEE Sensors Journal 15: 4888–4898.
  • Nagy, Z., F. Y. Yong, and A. Schlueter. 2016. “Occupant Centered Lighting Control: A User Study on Balancing Comfort, Acceptance, and Energy Consumption.” Energy and Buildings 126: 310–322.
  • Oh, M. H., K. H. Lee, and J. H. Yoon. 2012. “Automated Control Strategies of Inside Slat-Type Blind Considering Visual Comfort and Building Energy Performance.” Energy and Buildings 55: 728–737.
  • Olbina, S., and J. Hu. 2012. “Daylighting and Thermal Performance of Automated Split-Controlled Blinds.” Building and Environment 56: 127–138.
  • Onaygıl, S., and Ö Güler. 2003. “Determination of the Energy Saving by Daylight Responsive Lighting Control Systems with an Example From Istanbul.” Building and Environment 38: 973–977.
  • Pandharipande, A., and D. Caicedo. 2011. “Daylight Integrated Illumination Control of LED Systems Based on Enhanced Presence Sensing.” Energy and Buildings 43: 944–950.
  • Pandharipande, A., and D. Caicedo. 2015. “Smart Indoor Lighting Systems with Luminaire-Based Sensing: A Review of Lighting Control Approaches.” Energy and Buildings 104: 369–377.
  • Pandharipande, A., and S. Li. 2013. “Light-harvesting Wireless Sensors for Indoor Lighting Control.” IEEE Sensors Journal 13: 4599–4606.
  • Park, K. W., and A. K. Athienitis. 2003. “Workplane Illuminance Prediction Method for Daylighting Control Systems.” Solar Energy 75: 277–284.
  • Park, B. C., A. S. Choi, J. W. Jeong, and E. S. Lee. 2011. “Performance of Integrated Systems of Automated Roller Shade Systems and Daylight Responsive Dimming Systems.” Building and Environment 46: 747–757.
  • Peruffo, A., A. Pandharipande, D. Caicedo, and L. Schenato. 2015. “Lighting Control with Distributed Wireless Sensing and Actuation for Daylight and Occupancy Adaptation.” Energy and Buildings 97: 13–20.
  • Radiance. n.d. Accessed January 5, 2018. https://www.radiance-online.org/.
  • Reinhart, C. F. 2004. “Lightswitch-2002: A Model for Manual and Automated Control of Electric Lighting and Blinds.” Solar Energy 77: 15–28.
  • ResearchGate. n.d. https://www.researchgate.net/.
  • Roisin, B., M. Bodart, A. Deneyer, and P. D’Herdt. 2008. “Lighting Energy Savings in Offices Using Different Control Systems and Their Real Consumption.” Energy and Buildings 40: 514–523.
  • Rossi, M., A. Pandharipande, D. Caicedo, L. Schenato, and A. Cenedese. 2015. “Personal Lighting Control with Occupancy and Daylight Adaptation.” Energy and Buildings 105: 263–272.
  • Sadeghi, S. A., P. Karava, I. Konstantzos, and A. Tzempelikos. 2016. “Occupant Interactions with Shading and Lighting Systems Using Different Control Interfaces: A Pilot Field Study.” Building and Environment 97: 177–195.
  • Salata, F., I. Golasi, M. di Salvatore, and A. de Lieto Vollaro. 2016. “Energy and Reliability Optimization of a System That Combines Daylighting and Artificial Sources. A Case Study Carried out in Academic Buildings.” Applied Energy 169: 250–266.
  • Sanati, L., and M. Utzinger. 2013. “The Effect of Window Shading Design on Occupant use of Blinds and Electric Lighting.” Building and Environment 64: 67–76.
  • ScienceDirect. n.d. http://www.sciencedirect.com/.
  • Seo, D., L. Park, P. Ihm, and M. Krarti. 2012. “Optimal Electrical Circuiting Layout and Desk Location for Daylighting Controlled Spaces.” Energy and Buildings 51: 122–130.
  • Seppänen, O., and W. J. Fisk. 2005. “A Model to Estimate the Cost-Effectiveness of Improving Office Work Through Indoor Environmental Control.” Ashrae Transactions 111 (PART 2): 663–672.
  • Shen, E., J. Hu, and M. Patel. 2014. “Energy and Visual Comfort Analysis of Lighting and Daylight Control Strategies.” Building and Environment 78: 155–170.
  • Shen, H., and A. Tzempelikos. 2012. “Daylighting and Energy Analysis of Private Offices with Automated Interior Roller Shades.” Solar Energy 86: 681–704.
  • Shen, H., and A. Tzempelikos. 2017. “Daylight-linked Synchronized Shading Operation Using Simplified Model-Based Control.” Energy and Buildings 145: 200–212.
  • Simulink. n.d. Accessed January 5, 2018. https://www.mathworks.com/products/simulink.html.
  • Singhvi, V., A. Krause, C. Guestrin, J. H. Garrett, and H. S. Matthews. 2005. Intelligent light control using sensor networks. Proc 3rd Int Conf Embed Networked Sens Syst - SenSys ‘05:218.
  • Soori, P. K., and M. Vishwas. 2013. “Lighting Control Strategy for Energy Efficient Office Lighting System Design.” Energy and Buildings 66: 329–337.
  • Tan, F., D. Caicedo, A. Pandharipande, et al. 2018. “Sensor-driven, Human-in-the-Loop Lighting Control.” Lighting Research & Technology 80: 660–680.
  • Tiller, D. K., X. Guo, G. P. Henze, and C. E. Waters. 2009. “The Application of Sensor Networks to Lighting Control.” LEUKOS – J Illum Eng Soc North Am 5: 313–325.
  • Tiller, D K., X. Guo, P. Henze G, et al. 2010. “Validating the Application of Occupancy Sensor Networks for Lighting Control.” Lighting Research & Technology 42: 399–414.
  • TRNSYS. n.d. Accessed January 5, 2018. http://www.trnsys.com/.
  • Tsangrassoulis, A., and V. Bourdakis. n.d. “ Review of Methods Used to Predict Lighting Energy Savings Due to Daylight.”
  • Tzempelikos, A. 2008. “The Impact of Venetian Blind Geometry and Tilt Angle on View, Direct Light Transmission and Interior Illuminance.” Solar Energy 82: 1172–1191.
  • Tzempelikos, A., and A. K. Athienitis. 2007. “The Impact of Shading Design and Control on Building Cooling and Lighting Demand.” Solar Energy 81: 369–382.
  • Van De Meugheuvel, N., A. Pandharipande, D. Caicedo, and P. P. J. Van Den Hof. 2014. “Distributed Lighting Control with Daylight and Occupancy Adaptation.” Energy and Buildings 75: 321–329.
  • Van Den Wymelenberg, Kevin G. 2014. “Visual Comfort, Discomfort Glare, and Occupant Fenestration Control: Developing a Research Agenda.” LEUKOS 10 (4): 207–221.
  • Veitch, J. A. 2008. “ Research Matters (Individual Control Benefits People and Employers) NRCC-50321.” Light Des+Appl Ld+A 2008.
  • Veitch, J. A., and G. R. Newsham. 1998. “Lighting Quality and Energy-Efficiency Effects on Task Performance, Mood, Health, Satisfaction, and Comfort.” Journal of the Illuminating Engineering Society 27: 107–129.
  • Wang, Zhu, Yang Rui, and Wang Lingfeng. 2010. Multi-agent Intelligent Controller Design for Smart and Sustainable Buildings.” In: Proceedings of the 4th Annual IEEE Systems Conference, San Diego, CA, USA. IEEE
  • Wang, Z., and Y. K. Tan. 2013. “Illumination Control of LED Systems Based on Neural Network Model and Energy Optimization Algorithm.” Energy and Buildings 62: 514–521.
  • Warmerdam, K., A. Pandharipande, D. Caicedo, et al. 2016. “Visible Light Communications for Sensing and Lighting Control.” IEEE Sensors Journal 16 (17): 6718–6726.
  • Web of Knowledge. n.d. http://apps.webofknowledge.com/UA_GeneralSearch_input.do?product=UA&search_mode=GeneralSearch&SID=7A2dV1G5JZsGc8BcfYH&preferencesSaved=.
  • Wen, Y. J., and A. M. Agogino. 2008. “ Wireless Networked Lighting Systems for Optimizing Energy Savings and User Satisfaction.” 2008 IEEE Wirel Hive Networks Conf. 1–7.
  • Wen, Y. J., and A. M. Agogino. 2011a. “Personalized Dynamic Design of Networked Lighting for Energy-Efficiency in Open-Plan Offices.” Energy and Buildings 43: 1919–1924.
  • Wen Y, J., and M. Agogino A. 2011b. “Control of Wireless-Networked Lighting in Open-Plan Offices.” Lighting Research & Technology 43: 235–248.
  • Xiong, J., and A. Tzempelikos. 2016. “Model-based Shading and Lighting Controls Considering Visual Comfort and Energy use.” Solar Energy 134: 416–428.
  • Xu, L., Y. Pan, Y. Yao, D. Cai, Z. Huang, and N. Linder. 2017. “Lighting Energy Efficiency in Offices Under Different Control Strategies.” Energy and Buildings 138: 127–139.
  • Yang, I. H., and E. J. Nam. 2010. “Economic Analysis of the Daylight-Linked Lighting Control System in Office Buildings.” Solar Energy 84: 1513–1525.
  • Yu, T., Y. Kuki, G. Matsushita, et al. 2017a. “Design and Implementation of Lighting Control System Using Battery-Less Wireless Human Detection Sensor Networks [J].” Ieice Transactions on Communications 100 (6): 974–985.
  • Yu, T. H., S. Y. Kwon, K. M. Im, and J. H. Lim. 2017b. “An RTP-Based Dimming Control System for Visual Comfort Enhancement and Energy Optimization.” Energy and Buildings 144: 433–444.
  • Yu, X., and Y. Su. 2015. “Daylight Availability Assessment and its Potential Energy Saving Estimation -A Literature Review.” Renewable and Sustainable Energy Reviews 52: 494–503.
  • Yun, G. Y., H. Kim, and J. T. Kim. 2012. “Effects of Occupancy and Lighting use Patterns on Lighting Energy Consumption.” Energy and Buildings 46: 152–158.
  • Yun, G., K. C. Yoon, and K. S. Kim. 2014. “The Influence of Shading Control Strategies on the Visual Comfort and Energy Demand of Office Buildings.” Energy and Buildings 84: 70–85.
  • Zhang, S., and D. Birru. 2012. “An Open-Loop Venetian Blind Control to Avoid Direct Sunlight and Enhance Daylight Utilization.” Solar Energy 86: 860–866.
  • Zou, H., Y. Zhou, H. Jiang, et al. 2017. “WinLight: A WiFi-Based Occupancy-Driven Lighting Control System for Smart Building.” Energy and Buildings 158: 924–938.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.